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|a dc
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|a Leibo, Joel Z.
|e author
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|a Massachusetts Institute of Technology. Department of Brain and Cognitive Sciences
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|a McGovern Institute for Brain Research at MIT
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|a Leibo, Joel Z.
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|a Mutch, James Vincent
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|a Poggio, Tomaso A.
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|a Mutch, James Vincent
|e author
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|a Poggio, Tomaso A.
|e author
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|a Why the brain separates face recognition from object recognition
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|b Neural Information Processing Systems Foundation,
|c 2014-12-16T15:59:20Z.
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|z Get fulltext
|u http://hdl.handle.net/1721.1/92320
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|a Many studies have uncovered evidence that visual cortex contains specialized regions involved in processing faces but not other object classes. Recent electrophysiology studies of cells in several of these specialized regions revealed that at least some of these regions are organized in a hierarchical manner with viewpoint-specific cells projecting to downstream viewpoint-invariant identity-specific cells (Freiwald and Tsao 2010). A separate computational line of reasoning leads to the claim that some transformations of visual inputs that preserve viewed object identity are class-specific. In particular, the 2D images evoked by a face undergoing a 3D rotation are not produced by the same image transformation (2D) that would produce the images evoked by an object of another class undergoing the same 3D rotation. However, within the class of faces, knowledge of the image transformation evoked by 3D rotation can be reliably transferred from previously viewed faces to help identify a novel face at a new viewpoint. We show, through computational simulations, that an architecture which applies this method of gaining invariance to class-specific transformations is effective when restricted to faces and fails spectacularly when applied across object classes. We argue here that in order to accomplish viewpoint-invariant face identification from a single example view, visual cortex must separate the circuitry involved in discounting 3D rotations of faces from the generic circuitry involved in processing other objects. The resulting model of the ventral stream of visual cortex is consistent with the recent physiology results showing the hierarchical organization of the face processing network.
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|a United States. Defense Advanced Research Projects Agency. Information Processing Techniques Office
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|a United States. Defense Advanced Research Projects Agency. System Science Division. Defense Sciences Office
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|a National Science Foundation (U.S.) (Grant NSF-0640097)
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|a National Science Foundation (U.S.) (Grant NSF-0827427)
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|a United States. Air Force Office of Scientific Research (THRL Grant FA8650-05-C-7262)
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|a Adobe Systems
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|a Honda Research Institute USA, Inc.
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|a King Abdullah University of Science and Technology
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|a NEC Corporation
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|a Sony Corporation
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|a Eugene McDermott Foundation
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|a en_US
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|a Article
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|t Advances in Neural Information Processing Systems (NIPS)
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